21 to 30 of 189 Results
R Syntax - 13,3 KB -
MD5: ff59b89b35b785f4dae015f37b5969f4
Runing the random forest analysis chronologically splitting the data set into train (80%) and test (20%) data 5 different times. |
R Syntax - 4,5 KB -
MD5: 4d00dc94bc0974372b74e944acc55840
Final step consisting in fitting the best operational model to the full data set (using CGLS and Viirs products representing a more sustainable alternative to MODIS, which is nearing the end of its operational lifespan) This will give the final model outcome saved in .RData used... |
R Syntax - 4,5 KB -
MD5: 24244b0032b30234421e37dd723c33ca
Same as for 07.2.1 but for the models trained on MODIS data |
Unknown - 11,1 KB -
MD5: 4e457dbebd10b56c359821ea062853bc
Allows to create a mamba environment necessary to run R and Python scripts used for forecasting. Every files saved in PythonCodes path are used for the forecasting step 8
# Mamba installation
To use python and R: install mambaforge
Guidelines: https://mamba.readthedocs.io/en/l... |
Unknown - 8,0 KB -
MD5: 711e96f39ca13714491f6ef83508f787
create a mamba environment to define a different set of packages and functions that will operate together to visualize forecasting maps in an html interface. this final step use files in mppcpro-main folder and can be found also on github https://github.com/pioucyril/mppcpro |
Plain Text - 579 B -
MD5: 7c649a6fff8fd2b8b4ab1a14af1da692
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Plain Text - 925 B -
MD5: dfde1e3cee082808ceb25559335bc4d8
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R Syntax - 2,9 KB -
MD5: ac8dd6ca92d8737d883dbb7e9abad610
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Python Source Code - 3,1 KB -
MD5: 0f489c885ed9757c8bcc57d7c9957db3
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Unknown - 28 B -
MD5: 2d2776841d6164413357f7f227b722a7
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